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Multiple regression analysis of a patent’s citation frequency and quantitative characteristics: the case of Japanese patents

机译:专利被引频次和数量特征的多元回归分析:以日本专利为例

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摘要

Although many studies have been conducted to clarify the factors that affect the citation frequency of “academic papers,” there are few studies where the citation frequency of “patents” has been predicted on the basis of statistical analysis, such as regression analysis. Assuming that a patent based on a variety of technological bases tends to be an important patent that is cited more often, this study examines the influence of the number of cited patents’ classifications and compares it with other factors, such as the numbers of inventors, classifications, pages, and claims. Multiple linear, logistic, and zero-inflated negative binomial regression analyses using these factors are performed. Significant positive correlations between the number of classifications of cited patents and the citation frequency are observed for all the models. Moreover, the multiple regression analyses demonstrate that the number of classifications of cited patents contributes more to the regression than do other factors. This implies that, if confounding between factors is taken into account, it is the diversity of classifications assigned to backward citations that more largely influences the number of forward citations.
机译:尽管已经进行了许多研究来弄清影响“学术论文”被引用频率的因素,但是很少有研究基于统计分析(例如回归分析)来预测“专利”的被引用频率。假设基于各种技术基础的专利往往是被引用更多的重要专利,那么本研究将检查所引用专利分类数量的影响,并将其与其他因素(例如发明人数量)进行比较,分类,页面和声明。使用这些因素进行了多个线性,逻辑和零膨胀负二项式回归分析。在所有模型中,被引用专利的分类数量与引用频率之间都存在显着的正相关关系。此外,多元回归分析表明,与其他因素相比,引用专利的分类数量对回归的贡献更大。这意味着,如果考虑因素之间的混淆,则分配给反向引用的分类的多样性会在很大程度上影响正向引用的数量。

著录项

  • 作者

    Yoshikane Fuyuki;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 en
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